细胞簇分裂的研究

W. Wang
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引用次数: 7

摘要

在生物医学工程领域,常用图像技术对细胞进行分析。为了识别细胞,最基本也是最困难的一项任务是细胞的描绘,并且必须对细胞簇进行分解。本文提出了一种基于形状信息的细胞簇分割算法。该算法在预处理阶段将形态学平滑和孔洞填充相结合。然后通过多边形近似来识别细胞簇。最后实现了聚类分解,包括检测轮廓上的凹点和确定分解线。该算法不仅可以分割简单的细胞簇,还可以分割复杂的细胞簇。此外,该算法还可用于其他需要分离接触颗粒和重叠颗粒的应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Study on Cell Cluster Splitting
In the filed of biomedical engineering, it is often to use image technique for cell analysis. To recognize cells, one basic and hardest task is for cell delineation, and the cell clusters must be decomposed. In this paper, a novel algorithm based on shape information is proposed for splitting cell clusters. In the algorithm, it integrates morphological smoothing with holes filling in a pre-processing stage. Then the cell clusters are identified through a polygon approximation. Finally the cluster decompose is implemented, which consists of the detecting concave points on the contours and determining the decomposing lines. The algorithm can not only split the simple cell clusters, but also complicated clusters. In addition, this algorithm can be adopted for other applications, where separation between touching and overlapping particles is required.
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